Added Title
Predicting real estate prices using urban vitality
Date of Publication
7-3-2022
Document Type
Master's Thesis
Degree Name
Master of Science in Computer Science
Subject Categories
Computer Sciences
College
College of Computer Studies
Department/Unit
Software Technology
Thesis Advisor
Unisse C. Chua
Defense Panel Chair
Macario O. Cordel II
Defense Panel Member
Brian Paul V. Samson
Unisse C. Chua
Abstract/Summary
A real estate appraisal is multifaceted due to numerous property price variables. The factors known to influence the price are location, structure, and neighborhood. However, these features are property-centric; it does not consider the built environment's impact. Jane Jacobs introduces the theory of urban vitality as the conditions cities should exhibit to ensure a livable built environment. Although some characteristics in the existing literature overlap with urban vitality, many remain unexamined. Only a handful of research has investigated the influence of urban vitality on real estate prices.
In this work, we use multiple data sources to develop an XGBoost model that predicts real estate prices and identifies the features influencing house prices in the Philippines. The final model performed an R2, MAE, and RMSE scores of 0.70798, 0.001412, and 0.013449, on the test sets. The model can also achieve the R2, MAE, and RMSE scores of 0.68734, 0.001404, and 0.013702, on the holdout sets. The structural features contributing to the price are land size, floor area, number of bedrooms and bathrooms, property class, and transaction type. The walking distance scores for typical consumer destinations were not among the top essential features. The model considered the urban vitality features, block area, and closeness to daily places as important contributors.
We also discovered essential features that previous real estate modeling literature did not encounter —internet connectivity, sports facilities, fire systems, receiving facilities, and security systems.
Lastly, we develop a decision support tool to visualize the features influencing the property's price.
Keywords: urban vitality, real estate prediction, open data, feature database, xgboost, data visualization
Abstract Format
html
Language
English
Format
Electronic
Physical Description
132 leaves
Keywords
Real property—Prices; Real property—Valuation—Computer programs
Recommended Citation
Ya-On, C. V. (2022). Predicting real estate prices from urban vitality. Retrieved from https://animorepository.dlsu.edu.ph/etdm_softtech/3
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Embargo Period
7-3-2022
Note
Approval sheet title: Predicting real estate prices using urban vitality.